The paper presents a solution for efficiently and accurately solving separable least squares problems with multiple datasets. These problems involve determining linear parameters that are specific to each dataset while ensuring that the nonlinear parameters remain consistent across all datasets. A well-established approach for solving such problems is the variable projection algorithm introduced by Golub and LeVeque, which effectively reduces a separable problem to its nonlinear component. However, this algorithm assumes that the datasets have equal sizes and identical auxiliary model parameters. This article is motivated by a real-world remote sensing application where these assumptions do not apply. Consequently, we propose a generalized ...
Variable Projection (VarPro) is a framework to solve op- timization problems efficiently by optimall...
The retrieval of aerosol and cloud properties such as their optical thickness and/or layer/top heigh...
In this paper we present an inversion algorithm for nonlinear ill--posed problems arising in atmosph...
The iteratively regularized Gauss-Newton algorithm with simple bounds on the variables is extended t...
An important part of atmospheric remote sensing is the monitoring of its composition, which can be r...
International audienceWe describe an approach called the Multi-term Least Square Method (LSM) that h...
Physical inverse problems found on appropriate forward models, which can have highly systematic erro...
In this paper we present a retrieval algorithm for atmospheric remote sensing. The algorithm combine...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
The subject of this book is a hot topic with currently no monographic support. It is more advanced, ...
Light detection and ranging (LiDAR) is commonly used to create high-resolution maps; however, the ef...
A novel and efficient inverse method, named Nonlinear least squares four-dimensional variational dat...
In this paper we present a retrieval algorithm for atmospheric remote sensing. The algorithm combine...
Data like temperature or sales of seasonal products can be seen in periods fluctuating between highs...
In this paper we present different inversion algorithms for nonlinear ill-posed problems arising in ...
Variable Projection (VarPro) is a framework to solve op- timization problems efficiently by optimall...
The retrieval of aerosol and cloud properties such as their optical thickness and/or layer/top heigh...
In this paper we present an inversion algorithm for nonlinear ill--posed problems arising in atmosph...
The iteratively regularized Gauss-Newton algorithm with simple bounds on the variables is extended t...
An important part of atmospheric remote sensing is the monitoring of its composition, which can be r...
International audienceWe describe an approach called the Multi-term Least Square Method (LSM) that h...
Physical inverse problems found on appropriate forward models, which can have highly systematic erro...
In this paper we present a retrieval algorithm for atmospheric remote sensing. The algorithm combine...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
The subject of this book is a hot topic with currently no monographic support. It is more advanced, ...
Light detection and ranging (LiDAR) is commonly used to create high-resolution maps; however, the ef...
A novel and efficient inverse method, named Nonlinear least squares four-dimensional variational dat...
In this paper we present a retrieval algorithm for atmospheric remote sensing. The algorithm combine...
Data like temperature or sales of seasonal products can be seen in periods fluctuating between highs...
In this paper we present different inversion algorithms for nonlinear ill-posed problems arising in ...
Variable Projection (VarPro) is a framework to solve op- timization problems efficiently by optimall...
The retrieval of aerosol and cloud properties such as their optical thickness and/or layer/top heigh...
In this paper we present an inversion algorithm for nonlinear ill--posed problems arising in atmosph...